Distribution based ensemble for class imbalance learning

Ghulam Mustafa, Zhendong Niu, Abdallah Yousif, John Tarus

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7 引用 (Scopus)
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摘要

MultiBoost ensemble has been well acknowledged as an effective learning algorithm which able to reduce both bias and variance in error and has high generalization performance. However, to deal with the class imbalanced learning, the Multi- Boost shall be amended. In this paper, a new hybrid machine learning method called Distribution based MultiBoost (DBMB) for class imbalanced problems is proposed, which combines Distribution based balanced sampling with the MultiBoost algo- rithm to achieve better minority class performance. It minimizes the within class and between class imbalance by learning and sampling different distributions (Gaussian and Poisson) and reduces bias and variance in error by employing the MultiBoost ensemble. Therefore, DBMB could output the final strong learner that is more proficient ensemble of weak base learners for imbalanced data sets. We prove that the G-mean, F1 measure and AUC of the DBMB is significantly superior to others. The experimental verification has shown that the proposed DBMB outperforms other state-of-the-art algorithms on many real world class imbalanced problems. Furthermore, our proposed method is scalable as compare to other boosting methods.

源语言英语
主期刊名5th International Conference on Innovative Computing Technology, INTECH 2015
出版商Institute of Electrical and Electronics Engineers Inc.
5-10
页数6
ISBN(电子版)9781467375504
DOI
出版状态已出版 - 30 7月 2015
活动5th International Conference on Innovative Computing Technology, INTECH 2015 - Galicia, 西班牙
期限: 20 5月 201522 5月 2015

出版系列

姓名5th International Conference on Innovative Computing Technology, INTECH 2015

会议

会议5th International Conference on Innovative Computing Technology, INTECH 2015
国家/地区西班牙
Galicia
时期20/05/1522/05/15

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引用此

Mustafa, G., Niu, Z., Yousif, A., & Tarus, J. (2015). Distribution based ensemble for class imbalance learning. 在 5th International Conference on Innovative Computing Technology, INTECH 2015 (页码 5-10). 文章 7173365 (5th International Conference on Innovative Computing Technology, INTECH 2015). Institute of Electrical and Electronics Engineers Inc.. https://doi.org/10.1109/INTECH.2015.7173365